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Source polarization terms are categorized as either interfacial terms or bulk \
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Fig. 1 Schematic of the model and definitions of variables for an arbitrary \
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The model developed and implemented in the InterfacialThinFilmNLS package \
centers on describing transfer products for interfacial terms first, and then \
it uses those ideas to formulate bulk transfer products as an infinite stack \
of polarized sheets through the bulk of a nonlinear thin film within an thin \
film system.  Thus, this tutorial begins with a description of how \
interfacial transfer products are computed.\
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Additionally, two other functions are frequently used.  NonlinearPolarization \
can perform tensor multiplication of the susceptibility tensor with the outer \
product of input field vectors, and PhaseMatchAngle can be used to compute \
the phase matching angle of the emitted field.\
\>", "Text",
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calculate the phase matched angle of the wave-mixed frequency\
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Primary functions involved when applying the thin film model.\
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